Impact of genotype‐calling methodologies on genome‐wide association and genomic prediction in polyploids

Author:

Njuguna Joyce N.1ORCID,Clark Lindsay V.2,Lipka Alexander E.1ORCID,Anzoua Kossonou G.3,Bagmet Larisa4,Chebukin Pavel5,Dwiyanti Maria S.3,Dzyubenko Elena4,Dzyubenko Nicolay4,Ghimire Bimal Kumar6,Jin Xiaoli7ORCID,Johnson Douglas A.8,Kjeldsen Jens Bonderup9,Nagano Hironori3,de Bem Oliveira Ivone10,Peng Junhua11,Petersen Karen Koefoed12,Sabitov Andrey4,Seong Eun Soo13,Yamada Toshihiko3,Yoo Ji Hye14,Yu Chang Yeon14,Zhao Hua15,Munoz Patricio10,Long Stephen P.1,Sacks Erik J.1

Affiliation:

1. Department of Crop Sciences University of Illinois Urbana–Champaign Urbana Illinois USA

2. Research Scientific Computing Seattle Children's Research Institute Seattle Washington USA

3. Field Science Center for Northern Biosphere Hokkaido University Sapporo Japan

4. Vavilov All‐Russian Institute of Plant Genetic Resources St. Petersburg Russian Federation

5. FSBSI “FSC of Agricultural Biotechnology of the Far East named after A.K. Chaiki” Ussuriysk Russian Federation

6. Department of Crop Science, College of Sanghuh Life Science Konkuk University Seoul South Korea

7. Agronomy Department, Key Laboratory of Crop Germplasm Research of Zhejiang Province Zhejiang University Hangzhou China

8. USDA‐ARS Forage and Range Research Lab Utah State University Logan Utah USA

9. Department of Agroecology Aarhus University Tjele Denmark

10. Horticultural Science Department University of Florida Gainesville Florida USA

11. Spring Valley Agriscience Co. Ltd. Jinan China

12. Schroll Medical ApS Årslev Denmark

13. Division of Bioresource Sciences Kangwon National University Chuncheon South Korea

14. Bioherb Research Institute Kangwon National University Chuncheon South Korea

15. Key Laboratory of Horticultural Plant Biology of Ministry of Education Huazhong Agricultural University Wuhan China

Abstract

AbstractDiscovery and analysis of genetic variants underlying agriculturally important traits are key to molecular breeding of crops. Reduced representation approaches have provided cost‐efficient genotyping using next‐generation sequencing. However, accurate genotype calling from next‐generation sequencing data is challenging, particularly in polyploid species due to their genome complexity. Recently developed Bayesian statistical methods implemented in available software packages, polyRAD, EBG, and updog, incorporate error rates and population parameters to accurately estimate allelic dosage across any ploidy. We used empirical and simulated data to evaluate the three Bayesian algorithms and demonstrated their impact on the power of genome‐wide association study (GWAS) analysis and the accuracy of genomic prediction. We further incorporated uncertainty in allelic dosage estimation by testing continuous genotype calls and comparing their performance to discrete genotypes in GWAS and genomic prediction. We tested the genotype‐calling methods using data from two autotetraploid species, Miscanthus sacchariflorus and Vaccinium corymbosum, and performed GWAS and genomic prediction. In the empirical study, the tested Bayesian genotype‐calling algorithms differed in their downstream effects on GWAS and genomic prediction, with some showing advantages over others. Through subsequent simulation studies, we observed that at low read depth, polyRAD was advantageous in its effect on GWAS power and limit of false positives. Additionally, we found that continuous genotypes increased the accuracy of genomic prediction, by reducing genotyping error, particularly at low sequencing depth. Our results indicate that by using the Bayesian algorithm implemented in polyRAD and continuous genotypes, we can accurately and cost‐efficiently implement GWAS and genomic prediction in polyploid crops.

Funder

U.S. Department of Energy

National Science Foundation

Publisher

Wiley

Subject

Plant Science,Agronomy and Crop Science,Genetics

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